Improving performance of K-SVD based image denoising using curvelet transform

Sidheswar Routray, A. Ray, C. Mishra
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引用次数: 7

Abstract

Image denoising algorithm in transform domain which uses learning of dictionary has better PSNR performance than others. It is seen that the popular algorithms based on K-SVD proposed earlier has still in use. However, the texture part of the image could not be preserved during the process of denoising. It is also seen that the effect becomes more visible with increased value of standard deviation of the Gaussian noise. The proposed algorithm in this work uses curvelet transform along with K-SVD to retain the texture part of the image. The denoising with the proposed method shows better PSNR performance as compared to denoising with only K-SVD.
利用曲波变换改进基于K-SVD的图像去噪性能
基于字典学习的变换域图像去噪算法具有较好的PSNR性能。可以看出,之前提出的基于K-SVD的流行算法仍然在使用。然而,在去噪过程中,图像的纹理部分无法得到保留。随着高斯噪声的标准差值的增大,这种效应也变得更加明显。本文提出的算法使用曲波变换和K-SVD来保留图像的纹理部分。与仅使用K-SVD去噪相比,采用该方法去噪的PSNR性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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